The low to medium spatial resolution satellite data can still be utilized to meet the requirement for a certain level of land cover mapping. However, the land cover classifications of assigning pixel-by-pixel basic to specific land cover classes have been known to be a problematic phenomenon that limits the accuracy of classification. This paper examines the result of utilizing the hyperspectral approach as a recent alternative solution to the above problem to investigate whether or not the sensitivity allowed in the latter can increase the classification accuracy. Using TiungSAT-1 MSEIS data as input, comparative analysis were also performed with classical Maximum Likelihood classification. The results of this study clearly indicate that h...
Hyperspectral data are becoming more widely available via sensors on airborne and unmanned aerial ve...
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
The main aim of this research work is to compare k-nearest neighbor algorithm (KNN) supervised class...
Rapid advancement in remote sensing open new avenues to explore the hyperspectral Hyperion imagery p...
The effect of spatial, spectral and noise degradations on the accuracy of two thematic labelling sce...
Land-use classification for hyper-spectral satellite images requires a previous step of pixel charac...
The influence of spectral resolution on land cover classification in Krkonoše Mts. tundra Abstract T...
The technological evolution of optical sensors over the last few decades has provided remote sensing...
The best technique to extract information from remotely sensed image is classification. The problem ...
Multispectral sensors have been used to gather data about the Earth\u27s surface since the 1960\u27s...
The automated analysis of large areas with respect to land-cover and land-use is nowadays typically ...
This article develops a critical review of the hyperspectral splitting of the solar reflected radiat...
ABSTRACT: In recent years, the processing and analysis of hyperspectral images have become the main ...
The availability of hyperspectral images with improved spectral and spatial resolutions provides the...
Abstract—The problem of classification of hyperspectral im-ages containing mixed pixels is addressed...
Hyperspectral data are becoming more widely available via sensors on airborne and unmanned aerial ve...
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
The main aim of this research work is to compare k-nearest neighbor algorithm (KNN) supervised class...
Rapid advancement in remote sensing open new avenues to explore the hyperspectral Hyperion imagery p...
The effect of spatial, spectral and noise degradations on the accuracy of two thematic labelling sce...
Land-use classification for hyper-spectral satellite images requires a previous step of pixel charac...
The influence of spectral resolution on land cover classification in Krkonoše Mts. tundra Abstract T...
The technological evolution of optical sensors over the last few decades has provided remote sensing...
The best technique to extract information from remotely sensed image is classification. The problem ...
Multispectral sensors have been used to gather data about the Earth\u27s surface since the 1960\u27s...
The automated analysis of large areas with respect to land-cover and land-use is nowadays typically ...
This article develops a critical review of the hyperspectral splitting of the solar reflected radiat...
ABSTRACT: In recent years, the processing and analysis of hyperspectral images have become the main ...
The availability of hyperspectral images with improved spectral and spatial resolutions provides the...
Abstract—The problem of classification of hyperspectral im-ages containing mixed pixels is addressed...
Hyperspectral data are becoming more widely available via sensors on airborne and unmanned aerial ve...
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
The main aim of this research work is to compare k-nearest neighbor algorithm (KNN) supervised class...